Hardware-in-the-Loop Simulations and Control
Design for a Small Vertical Axis Wind Turbine
Ugur Sancar, Aykut Ozgun Onol, Ahmet Onat, Member, IEEE, Serhat Yesilyurt, Senior Member, IEEE
Mechatronics Engineering Program
Sabanci University
Istanbul, Turkey
ugursancar,onol,onat,[email protected]
Abstract— Control design plays an important role in wind en-
ergy conversion systems in achieving high efficiency and perfor-
mance. In this study, hardware-in-the-loop (HIL) simulations are
carried out to design a maximum power point tracking (MPPT)
algorithm for small vertical axis wind turbines (VAWTs). Wind
torque is calculated and applied to an electrical motor that drives
the generator in the HIL simulator, which mimics the dynamics of
the rotor. To deal with disturbance torques in the HIL system, a
virtual plant is introduced to obtain an error between the speeds
in the HIL system and virtual plant. This error is used by a pro-
portional-integral (PI) controller to generate a disturbance torque
compensation signal. The MPPT algorithm is tested in the HIL
simulator under various wind conditions, and the results are com-
pared with numerical simulations. The HIL simulator successfully
mimics the dynamics of the VAWT under various wind conditions
and provides a realistic framework for control designs.
Keywords—Hardware in the loop; maximum power point
tracking; vertical axis wind turbine, inertia emulation; disturbance
torque compensation
I. INTRODUCTION
Renewable energy systems are very popular due to increasing
energy demand in the developing world, the climate-change
threat and diminishing reserves of fossil fuels. The widespread
use of wind energy is enabled in part by horizontal axis wind
turbines (HAWTs) even though they were invented later than
VAWTs, which are viable alternatives in the small scale use of
wind energy as they are omnidirectional and have simpler de-
signs than HAWTs [1,2]. Moreover, VAWTs can be used as
portable generators in rural areas and connected to local micro
grids and storage devices. Cost effective system design of
VAWTs bears utmost importance for their ubiquitous deploy-
ment.
Power electronics is used to control and regulate the torque
and speed of wind turbines in order to maximize the power out-
put [3]. For VAWTs with fixed pitch angles, extracted wind
power can be characterized by a power coefficient, which is a
function of the rotor angular velocity and wind velocity and de-
noted by Cp [4]. For a particular wind velocity, the turbine needs
to be driven at the optimal rotor speed to operate the system at
maximum power [5]. Variants of the maximum power point
tracking (MPPT) algorithms are present in the literature and can
be classified into two categories [6]: MPPT based on knowledge
of rotor dynamics, and MPPT based on an iterative incremental
search. In order to reduce the cost of small-scale applications, a
sensorless MPPT method is preferred for the optimum opera-
tion of the system in terms of energy efficiency since knowledge
of the turbine parameters and measurement of the wind and ro-
tor speeds are not required [7,8].
Hardware-in-the-loop (HIL) simulations have numerous ad-
vantages over numerical, i.e. only software based, simulations
in testing the performance of power electronic components and
control designs in controlled experiments under realistic condi-
tions [9]. The effects of generator parameters, the sampling pe-
riod of control units, thermal effects and other disturbances are
observed directly in HIL simulations [10]. Types of HIL designs
are discussed in detail by Bouscayrol [10]; here we employ a
mechanical level HIL simulator to study the efficiency of MPPT
algorithms in the control of a permanent magnet generator that
is used in a small-scale VAWT. In order to ensure the fidelity
of the simulator, the static and dynamic characteristics of the
HIL simulator must be the same as the characteristics of the real
system [11].
The motor in the HIL simulator can deliver the wind torque
and inertial torque of the rotor with the help of a compensation
torque and by calculating the speed derivative as previously re-
ported by [11-13]. However, for an accurate estimation of the
speed derivative, a low-pass filter (LPF) may be necessary to
eliminate the measurement noise. Moreover, filtering the speed
or its derivative introduces delays which impede accurate mim-
icking of the VAWT system and successful implementation of
the control algorithm. In order to alleviate the difficulties asso-
ciated with delays, one can propose a closed-loop observer to
calculate the derivative of the angular velocity and reject the
noise as in [14], or alternatively, estimation of the speed deriv-
ative and the use of the LPF can be eliminated by using the sim-
ilarity between the real system and the HIL system dynamics as
described in Section II-B. In this work, electromechanical com-
ponents in the HIL simulator are tested at steady-state and tran-
sient conditions to confirm the accurate representation of the
small VAWT, then the MPPT algorithm is applied to study the
effects of the sampling period and current increments. Compar-
isons are presented between the HIL simulations (HILS) and
numerical simulations based on a power coefficient curve and
the dynamics of the rotor.
2015 XXV International Conference on
Information, Communication and Automation Technologies (ICAT)
October 29 – October 31, 2015, Sarajevo, Bosnia and Herzegovina
II. METHODOLOGY
A. Aerodynamic Model of the VAWT
The available wind power of a VAWT of radius R and length L
is given by:
3Rwind p wP C L Uρ= (1)
where ρ is the air density, Uw is the wind speed, Cp is the power
coefficient, which is a function of tip speed ratio, λ, which is
given by:
r
w
R
U
ωλ = (2)
where ωr is the rotor angular velocity. In this study, a λ – Cp
curve that is obtained by using a computational fluid dynamics
simulation is employed (Fig. 1).
Fig. 1. λ – Cp curve of the VAWT.
The wind torque, Twind, is calculated from (1) and the angular
velocity of the rotor, ωr:
3Rp wwindwind
r r
C L UPT
ρ
ω ω= = (3)
The dynamic model of the wind turbine can be represented by
r
r wind gen rf
dJ T T T
dt= − −
ω (4)
where Jr is the equivalent inertia of the rotor, Tgen is the genera-
tor torque on the rotor, Trf is the rotor friction torque, which is
assumed to be proportional to ωr by a coefficient B as follows:
rf rT B= ω (5)
Parameters of the VAWT model are given in Table I.
TABLE I. Wind Turbine Model Parameters
Wind Turbine Model Parameters
Parameter Description Value Unit
Jr Moment of inertia of the rotor 2 kg-m2
R Radius of the rotor 0.5 m
L Length of a blade 1 m
B Friction coefficient 0.02 Ns/rad
ρ Air density 1.2 kg/m3
B. Hardware-In-the-Loop (HIL) System
Schematic representation of the VAWT and HIL systems
are shown in Fig. 2. The HIL system consists of a permanent
magnet synchronous motor (PMSM) (Femsan 5F100810001), a
motor drive (TDE Macno, Mopde B-6.8A) and a gear box (Yil-
maz Reduktor MN002 – B07) to reduce the velocity of the mo-
tor that mimics the wind-driven rotor under arbitrary wind con-
ditions. Additionally, a permanent magnet synchronous gener-
ator (PMSG) which is also considered for actual VAWT system,
and a programmable electronic load (Agilent N3306A) as the
power sink are employed in the HIL system. As an interface
between software (MATLAB/Simulink) and hardware, dSpace
(DS1104) controller card is used.
Fig. 2 (a) Representation of VAWT system in real world, (b) HIL simulation
system.
The rotor dynamics of the VAWT system in Fig. 2(a) is
given by (4). The same dynamic behaviour can be mimicked by
the HIL system with the equation of motion at the motor side:
mm m load
dJ T T
dt
ω= − (6)
where Tm is the motor torque, ωm is the rotational speed of the
motor shaft, Jm is the equivalent inertia at the motor side of the
gear box, and the total load torque, Tload is given by:
gen
load hf
TT T= +
Γ (7)
where Tgen is the torque of the generator, Γ is the gear ratio and
Thf is the friction torque, which corresponds to the friction in all
components including the gear box, generator and motor. The
rotational speed of the generator, ωgen, is linked to the motor
speed by (8).
m
gen
ωω =
Γ (8)
Assuming that the VAWT does not have a gear box and the gen-
erator is directly coupled to the rotor, the rotational speed of the
rotor is the same as the rotational speed of the generator in the
HIL system, i.e., ωr = ωgen. Thus, the behaviour of the VAWT
system can be mimicked by the HIL simulator with the appro-
priate motor torque Tm, which is applied as a reference torque in
the HIL simulator and calculated from (4), (6), (7), and (8) as
follows:
( )m
m load wind gen rf
w
JT T T T T
J
Γ= + − − (9)
The block diagrams of the VAWT system and the HIL sys-
tem are given in Fig. 3 where the motor is the actuator and used
for mimicking the rotor dynamics in the HIL system. As shown
in Fig. 3 and from(9), the load torque, Tload, is employed in the
reference motor torque calculation, and Tload is calculated by us-
ing the generator torque, Tgen, and friction torque, Thf, as in (7).
Consequently, if the generator and friction torques in the HIL
system are known, a perfect cancelation of Tload can be
achieved. In this way, the generator angular velocity, ωgen, be-
haves in the same way as in the VAWT system. However, nei-
ther the generator nor the friction torques are easy to obtain pre-
cisely. For permanent magnet synchronous machines, there is a
cogging torque, furthermore, the relation between the current
and torque is not purely linear [15]. Furthermore, nonlinear fric-
tion torque may lead to difficulties. Compensation for the fric-
tion torque can be achieved by model-based or non-model-
based methods as described in [16].
Fig. 3. Block diagram of the VAWT dynamics, HIL System and reference mo-
tor torque calculation.
In the non-model-based compensation approach, the friction
torque is treated as a disturbance for the system and can be com-
pensated by the disturbance observer (DO) [17]. Derivatives of
the angular velocity can be filtered in the DO to eliminate the
noise, which influences the derivatives dramatically. A high
gain LPF provides a fast disturbance rejection performance.
However, if a low-cost sensor (resolver) is used to measure the
speed, relatively large noise at low speeds limits the gain, intro-
duces a delay, and distorts the characteristics of the system.
Hence, the disturbance torque cannot be fully compensated in a
robust manner. Several approaches to deal with this problem are
proposed in literature: rapid disturbance changes in DO struc-
tures are discussed and a virtual plant model-based control is
proposed to deal with disturbance torques in [18]; in addition to
a virtual-plant disturbance compensator a friction-model-based
feed-forward compensator is proposed in [19].
In this study, not only the friction torque, but also the devi-
ations from the linear relationship between the torque and the
current on the generator side and all other external effects are
treated as disturbances. First, the friction torque is obtained by
using curve-fitting for the load-free motor torque and speed
measurements. Then, the generator torque, Tgen, in the HIL sys-
tem is obtained from the motor and friction torques for a given
speed and current, and the torque constant is obtained. Moreo-
ver, the virtual-plant model is used to obtain the error between
the actual speed and the speed in the virtual-plant model. The
virtual plant is identical with the dynamic model of the wind
turbine expressed by (4). This equation is applied in the virtual
plant block to determine the rotor speed as a function of the total
torque in the lack of external effects. The difference between
the speed generated by the virtual plant (ω*gen) and the actual
speed (ωgen) is the error that is used to generate the disturbance
compensation torque by a PI based controller as shown in the
block diagram in Fig. 4. Consequently, the friction and genera-
tor torques are calculated by linear relationships while the devi-
ations are handled by the disturbance compensation torque,
Tcomp. Especially for low speeds and high load torques, and the
start-up phase of the HIL system, deviations are relatively
higher than the nominal operation point of the motor, generator
and gear box. The torque-disturbance compensator ensures that
the HIL simulator mimics the VAWT system successfully.
Fig. 4. Model following controller with a PI based disturbance compensator
structure in the HIL system.
The results of the numerical (i.e. software-only) and the HIL
simulations for a step change in the wind velocity are compared
to confirm that the HIL simulator mimics the VAWT accu-
rately. For this test, the generator torque is set to a value pro-
portional to the speed, Tgen = 0.1ωgen with the purpose of observ-
ing the dynamic effects only.
In Fig. 5, top plot shows the wind speed; the middle plot
shows the generator speed obtained from numerical and the HIL
simulations; the bottom plot shows the error in the speed, which
is the difference between the virtual plant and actual speeds in
the HILS. Results confirm that the HIL simulator is capable of
emulating the rotor inertia and mimicking the overall VAWT
system. Parameters of the PI controller are given in Table II.
Fig. 5 The comparison of HIL and numerical simulations rotational speed re-
sponses for a step up and down wind speed.
TABLE II. PARAMETERS OF THE PI-CONTROLLER IN THE COMPENSATOR
Parameters of PID Controller and MPPT
Parameter Description Value Unit
KP Proportional gain 0.05 -
KI Integral gain 0.02 -
C. Power Electronics
In the HIL simulator, a PMSG and a passive diode rectifier are
used as in the suggested VAWT system for electromechanical
energy conversion. The passive diode rectifiers have disad-
vantages such as causing high harmonic currents, generator
torque fluctuations and increasing the resistive loss, however
they are low-cost and robust, and do not need a controller. In
the PMSG-rectifier structure, output voltage is proportional to
the rotor speed of the generator [20]. The highest output voltage
prevails when the load current is zero, and the voltage output
decreases as the current increases.
To determine how much the voltage drops for a given cur-
rent and the generator speed, PMSG and the rectifier are mod-
eled by a transformation from the 3-phase model to an equiva-
lent DC machine model. In [21] and [22], a simplified DC
equivalent model is proposed for PMSG-rectifier structure. The
PMSG-rectifier model and the simplified equivalent DC model
are shown in Fig. 6. In addition to the resistive voltage drop,
armature reaction in the generator and overlapping currents in
the rectifier during commutation intervals are also taken into
account for the voltage drop calculations in this model. A rela-
tion is obtained between the 3-phase AC RMS values and DC
potentials.
Fig. 6. PMSG-Rectifier and its simplified DC model.
In Fig. 6, Es is electromotive force (EMF), Ls is phase induct-
ance, Rs is the phase resistance of the PMSG, Idc and Vdc are the
average values of the DC current and voltage, respectively; Esdc,
Ldc, Rdc represents the correspondence values between the 3-
phase AC model and the equivalent DC model. Rover term is
added to the model to represent the average voltage drop due to
the current commutation in the 3-phase passive diode bridge
rectifier. This voltage drop from the current commutation is also
explained in detail in [23]. The resistance, Rover, is calculated as
follows:
3
s gen
over
L pR
ω
π= (10)
where p is the number of pole pairs of the PMSG. For positive
values of Vdc, ωgen and Idc, Vdc can be calculated as follows [21],
[22]:
( )2
2 ( )dc sdc gen dc dc dc over dc
V E p L I R R Iω= + − + (11)
A simple test is carried out to verify the voltage drop model
by running the PMSG with different speeds and currents. Ac-
cording to Fig. 7, the DC model predicts the actual voltage drop
in the PMSG very well. The model variables for the PMSG-
rectifier circuit and its DC equivalent model are provided in Ta-
ble III.
TABLE III. PMSG AND DC MODEL VALUES
Variable PMSG DC Model
Flux φs 3 6 /dc s=φ φ π
EMF s s genE pφ ω= 3 6 /sdc sE E π=
Inductance Ls 218 /dc sL L π=
Resistance Rs 218 /dc sR R π=
φs = 0.106 Vs/rad, p = 6, Ls = 3.3 mH, Rs = 1.7 Ω
III. MAXIMUM POWER POINT TRACKING
In order to operate the VAWT at optimal power, the gener-
ator torque, Tgen, must be adjusted to balance the wind torque at
the optimal rotor speed. The generator torque is proportional to
the load current by a factor called the torque constant, Kt, which
is obtained as 1.3 A/N-m here:
gen t dcT K I= (12)
Fig. 7. DC voltages with respect to the load current under different speed of
PMSG that are represented by different colors. Solid lines represent the nu-
merically calculated values, the circles show the experimental results.
The DC voltage of the PMSG-rectifier structure, Vdc, is a
function of the generator speed, ωgen, and the current, Idc, as
given in (11). Therefore, for each torque and generator speed
pair, there is a unique pair of generator current and voltage, Idc
and Vdc. The output power, Pdc, is the product of the DC voltage
and current, and may have a different maximum than the maxi-
mum power from the wind due to voltage and current charac-
teristics of the generator and the power electronic circuit. There-
fore, the overall characteristics of the system must be taken into
account to find the maximum output power point of the VAWT
system.
The plots of the wind and output power versus the rotor
speed for a wind velocity of 8 m/s are shown in Fig. 8, where
the maximum output power, Pdc,max, realizes for different speed
than the maximum wind power, Pwind,max. The loss is relatively
high in the low-speed / high-torque operating conditions for the
PMSG, and hence Pdc,max attains a maximum value for higher
rotor speed than the speed at Pw,max. Obviously, losses and the
efficiency characteristics result lower power output than the
maximum available wind power.
In order to obtain the maximum power point, a control
method is implemented based on an iterative tracking algorithm.
The MPPT algorithm does not require the measurements of the
wind velocity and the rotor speed. The incremental search for the
optimum power output is based on the voltage and current meas-
urements as described in [24]. The MPPT algorithm relies on the
fact that the power output does not vary with voltage at the max-
imum point, i.e., the derivative of the power with respect to the
voltage is zero:
( )0 0dc dc dc dc dc dc
dc dc
dc dc dc dc dc
dP d V I dI dV VI V
dV dV dV dI I= = + = ⇒ + = (13)
According to (13), relative change in the voltage must be
positive if the relative change in current is negative at the max-
imum power point or vice versa. Therefore, the MPPT algo-
rithm incrementally increases or decreases the current and com-
pares with the change in the voltage to obtain the maximum
power. The flowchart of the MPPT algorithm is presented in
Fig. 9.
Fig. 8. Wind power Pwind, wind torque Twind and electrical output power Pdc
with respect to the rotational speed under 8 m/s wind speed. The power and the torque are associated with the left y-axis and the right y-axis respectively.
Fig. 9. Flow chart of the MPPT algorithm.
The algorithm starts with measuring the DC voltage and cur-
rent, then it calculates the change in the voltage for a preset in-
crement (K > 0) in the current. If the change in the voltage is
positive, it continues to increase the current until the voltage
change is zero or negative; otherwise it decreases the current
until the maximum power is reached. The sampling period of
the control unit, Tc, is an important parameter that influences the
performance of the algorithm significantly. The current step
size, K, and the sampling period, Tc, need to be tuned to obtain
fast response and small fluctuations around the target operating
conditions.
IV. RESULTS
In this study, the proposed MPPT algorithm has been tested
in the HIL simulator for step and sinusoidal wind conditions.
Simulations are carried out by setting the sampling period of the
HIL simulator to 1 ms. A parametric study is carried out to an-
alyze the effects of the sampling period of the control unit (Tc)
and the current increment size (K) on the energy output. Conse-
quently, the parameters which provide the best performance in
terms of energy output are determined as Tc = 0.2 s, K = 0.5 A.
First, the MPPT algorithm is tested for a step change in the
wind velocity, which is depicted with respect to time in the top
plot in Fig. 10. Corresponding plots for the generator (rotor)
speed, ωgen, electrical output power Pdc, current, Idc and the DC
voltage Vdc, are also shown in Fig. 10. Numerical simulations
and HIL simulator results agree well. Simulations predict
slightly higher currents, lower rotor speeds and voltage outputs
than the HIL simulator, but power outputs of both simulations
are close. Fluctuations due to the MPPT algorithm are present
in the current and the voltage in both simulations, however,
slightly larger in the HIL simulations than in the numerical
ones. Results are summarized in Table IV.
TABLE IV . COMPARISON OF ELECTRICAL OUTPUT POWERS UNDER DIFFERENT
WIND SPEED
Electrical output power Pdc under step change in steady state
Wind Speed [m/s]
Theoretically Calcu-
lated Power [W]
Numerical (Software-only) Simulation
Power [W]
HILS Power [W]
6 36.75 32 – 33 25 - 40
8 78.46 70 – 71 65 - 86
10 137.7 129 – 133 110 – 150
Although the average measured power in the HILS is less
than the calculated power in the numerical simulation, the HILS
power oscillates and occasionally reaches higher power values
than the theoretical maximum power values by using the kinetic
energy stored in the rotor. In the HIL system, the MPPT algo-
rithm generates a reference current to track its optimal value.
However, tracking the reference current does not cease at the
optimum value, and continues with overshoots and undershoots.
During this time, energy stored in the inertia is extracted, and
hence higher instantaneous power outputs than the theoretical
maximum are observed.
The MPPT algorithm is also tested for a sinusoidal wind ve-
locity with frequencies of 0.1 Hz and 0.05 Hz, and the results
are represented in Fig. 11. Results indicate that the HIL simu-
lator and the numerical model agree well. In both cases, the
MPPT algorithm leads to a power generation with a slight phase
difference between the wind and the power output signals.
Fig. 10. Numerical simulation and HILS results for the step down and up
wind speed.
V. CONCLUSION
The HIL system performs satisfactorily, emulates the over-
all VAWT system realistically, and allows controlled experi-
ments for ideal wind conditions which are difficult to obtain in
actual experiments with the turbine. The HIL simulations are
especially useful to test the performance of power electronic
components and control designs. According to the HIL simula-
tions, the electrical properties of the PMSG generator and recti-
fiers may lead to lower power outputs than the available power
in the wind. As a part of future work, alternative generators can
be tested to obtain ideal generator for a given rotor and wind
conditions. Moreover, active rectification can be carried out to
mitigate the harmonics which have no contribution to the active
power and decreases the efficiency in the case of a passive rec-
tifier.
For the control design, we implemented the MPPT algo-
rithm and observed that power fluctuations in the HIL simulator
are higher than the ones observed with the numerical model.
The algorithm leads to overshoots and undershoots, which cor-
respond to use and storage of the kinetic energy in the rotor due
to delay introduced by the sampling time of the algorithm.
Adaptive increments in current and sampling times can be used
for power tracking with smaller fluctuations and faster re-
sponses.
Fig. 11. Numerical simulation and HILS results for the sinusoidal wind speed.
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